基于软标签和噪声鲁棒性损失的弱监督医学图像分割

B. Felfeliyan, A. Hareendranathan, G. Kuntze, S. Wichuk, N. Forkert, J. Jaremko, J. Ronsky
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引用次数: 0

摘要

深度学习算法的最新进展为解决许多医学图像分析问题带来了显著的好处。训练深度学习模型通常需要带有专家标记注释的大型数据集。然而,获取专家标记的注释不仅昂贵,而且很主观,容易出错,并且观察者之间/内部的可变性会给标签带来噪声。当使用深度学习模型分割医学图像时,由于解剖边界模糊,这是一个特别的问题。使用经过不正确分割标签训练的深度学习模型的基于图像的医疗诊断工具可能会导致错误的诊断和治疗建议。与单评级注释相比,多评级注释可能更适合用小的训练集训练深度学习模型。本文的目的是开发和评估一种基于MRI中病变特征的多因子注释和解剖学知识生成概率标记的方法,以及一种使用归一化主动被动损失作为“噪声容忍损失”函数的概率标记训练分割模型的方法。将该模型与17例膝关节MRI扫描的临床分割和骨髓病变(BML)检测的二元基底真值进行比较。与二元交叉熵损失函数相比,该方法成功地提高了精度14,召回率22,Dice得分8%。总的来说,这项工作的结果表明,使用软标签提出的归一化主动式被动损耗成功地减轻了噪声标签的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly Supervised Medical Image Segmentation With Soft Labels and Noise Robust Loss
Recent advances in deep learning algorithms have led to significant benefits for solving many medical image analysis problems. Training deep learning models commonly requires large datasets with expert-labeled annotations. However, acquiring expert-labeled annotation is not only expensive but also is subjective, error-prone, and inter-/intra- observer variability introduces noise to labels. This is particularly a problem when using deep learning models for segmenting medical images due to the ambiguous anatomical boundaries. Image-based medical diagnosis tools using deep learning models trained with incorrect segmentation labels can lead to false diagnoses and treatment suggestions. Multi-rater annotations might be better suited to train deep learning models with small training sets compared to single-rater annotations. The aim of this paper was to develop and evaluate a method to generate probabilistic labels based on multi-rater annotations and anatomical knowledge of the lesion features in MRI and a method to train segmentation models using probabilistic labels using normalized active-passive loss as a"noise-tolerant loss"function. The model was evaluated by comparing it to binary ground truth for 17 knees MRI scans for clinical segmentation and detection of bone marrow lesions (BML). The proposed method successfully improved precision 14, recall 22, and Dice score 8 percent compared to a binary cross-entropy loss function. Overall, the results of this work suggest that the proposed normalized active-passive loss using soft labels successfully mitigated the effects of noisy labels.
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